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awesome-semantic-segmentation's Introduction

Awesome

Awesome Semantic Segmentation

Networks by architecture

Semantic segmentation

Instance aware segmentation

Weakly-supervised segmentation

RNN

GANS

Graphical Models (CRF, MRF)

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Evaluation code

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Other lists

Medical image segmentation:

Satellite images segmentation

Video segmentation

Autonomous driving

Other

Networks by framework (Older list)

Papers and Code (Older list)

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akirasosa avatar barvinograd avatar divamgupta avatar hellochick avatar heumchri avatar mrgloom avatar njanirudh avatar ocourtin avatar patrickchrist avatar qubvel avatar super233 avatar taokong avatar vspinu avatar wkentaro avatar yassouali avatar

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awesome-semantic-segmentation's Issues

KittiSeg

Hi mrgloom,

thanks for including MultiNet in the list. Have you also seen KittiSeg, my semantic segmentation toolkit in tensorflow? It might fit well into the category Semantic Segmentation Code.

Marvin

LSTM-CF

LSTM-CF is the state of the art semantic segmentation algorithm for RGB-D images.
This is based on bidirectional LSTM layer like ReSeg, ReNet.
I recommend you to add this on that part.

https://github.com/icemansina/LSTM-CF

Better U-net implementation

Thanks for creating this list. It has been really helpful. However, please consider adding the following link among the implementations of U-net linked for Keras:

https://github.com/zhixuhao/unet

The other papers provide the implementation for other tasks and miss out on the importance of data augmentation highlighted in the original paper. The code here implements the paper exactly, training it on 30 images along with the data augmentation methods mentioned. I personally found this to be the most helpful.

Why is this awesome?

Firstly, I would like to thank you for your efforts in compiling this list.

I was just wondering, why this is an awesome list for semantic segmentation? It more feels like a collection of resources for semantic segmentation, rather than a curation. It lacks a critical review and qualified judgement of the referenced articles and tools.

As someone who would like to start with Semantic Segmentation, I would be totally lost in this pile of links:

  • Where would you start?
  • What is the current state-of-the-art?
  • What has been shown to work well / not work well? Ideally you would start with a recent review paper over the different methodologies. Is there such a paper?
  • It would also be great to put publication dates next to papers or sort them chronologically to see what is well-established and what is still bleeding edge.

object segmentation

hi,I started recently dealing with object segmentation and I want to know what are the output points positions of the segmentation operation ### (the points positions of the detector edge) and how i got it.any help??

no code!!

hello @mrgloom
I dont see any code, I wonder why others discuss about nothing!
Am I wrong? where is the code?

thanks in advance

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